Bandpass filter vs sequential high and lowpass filter in Matlab: weird difference

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I am trying to bandpass a neural signal acquired at 20kHz between 0.5 and 100 Hz. I have tried to do it in two ways. The first way is to sequentially highpass and lowpass the signal and the second one is to use the bandpass function in Matlab. To my surprise, the results were dramatically different. See image below:
Here is the code:
clear
close all
load('bandpass_vs_seq_lo_and_hi_pass','tr','fs') % loads variable called tr and fs
% tr is the signal vector and fs is the sampling rate, 20kHz
padlen=0.01; % padding length in secs to remove transients at signal start and end
padn=padlen*fs; % padding length in samples
f_lo=0.5; % lo cutoff
f_hi=100; % hi cutoff
tvec=(1/fs:1/fs:1/fs*length(tr));
figure
ax1=subplot(3,1,1);
ax2=subplot(3,1,2);
ax3=subplot(3,1,3);
% sequential highpass and lowpass filter
% hipass filter
nutr=[flipud(tr(1:padn));tr;flipud(tr(end-(padn-1):end))]; % prefixing and appending signal
[filtr,~]=highpass(nutr,f_lo,fs);
filtr=filtr(padn+1:end-padn); % removing prefixed and appended parts
tr1=filtr;
% lopass filter
nutr=[flipud(tr1(1:padn));tr1;flipud(tr1(end-(padn-1):end))];
[filtr2,~]=lowpass(nutr,f_hi,fs);
filtr2=filtr2(padn+1:end-padn);
tr1=filtr2;
% bandpass filter
nutr=[flipud(tr(1:padn));tr;flipud(tr(end-(padn-1):end))];
[filtr,~]=bandpass(nutr,[f_lo,f_hi],fs);
filtr=filtr(padn+1:end-padn);
tr2=filtr;
plot(ax1,tvec,tr)
plot(ax2,tvec,tr1)
plot(ax3,tvec,tr2)
xlabel(ax3,'Time (s)')
title(ax1,'Original signal, fs=20kHz')
title(ax2,'Sequential high pass and lowpass (0.5 to 100 Hz)')
title(ax3,'Bandpass (0.5 to 100 Hz)')
Can anyone shed light on what is going on here?
Also asked here:
https://dsp.stackexchange.com/questions/73407/bandpass-filter-vs-sequential-high-and-lowpass-filter-in-matlab-weird-differenc
  3 comentarios
Anand Kulkarni
Anand Kulkarni el 28 de Feb. de 2021
Thanks @Mathieu NOE It was very useful to confirm that this is weird. The computational cost is also very strange. I agree that the good old butter followed by filtfilt looks good and gets done in a reasonable time.
Mathieu NOE
Mathieu NOE el 1 de Mzo. de 2021
hello
just minor improvement, if you detrend (remove mean value of your signal), you can probably reduce the amount of padding needed
tr = tr -mean(tr );

Iniciar sesión para comentar.

Respuesta aceptada

Mathieu NOE
Mathieu NOE el 24 de Feb. de 2021
I prefer this code ... faster and I know what filters I use
i changed the input signal random + negative constant (to mimic your data)
I increased padding length to 2 secs to be coherent with the time constant of a 0.5 Hz high pass filter
and also both sequential and single bandpass filter outputs have same amplitude
fs = 20e3;
tr = randn(fs*10,1)-60;
% tr is the signal vector and fs is the sampling rate, 20kHz
padlen=2; % padding length in secs to remove transients at signal start and end
padn=padlen*fs; % padding length in samples
f_lo=0.5; % lo cutoff
f_hi=100; % hi cutoff
tvec=(1/fs:1/fs:1/fs*length(tr));
figure
ax1=subplot(3,1,1);
ax2=subplot(3,1,2);
ax3=subplot(3,1,3);
% sequential highpass and lowpass filter
% hipass filter
nutr=[tr(padn:-1:1);tr;tr(end:-1:end-(padn-1))]; % prefixing and appending signal
N = 2; % MN
[B,A] = butter(N,f_lo*2/fs,'high'); % MN
filtr= filtfilt(B,A,nutr); % MN
% lopass filter
N = 2; % MN
[B,A] = butter(N,f_hi*2/fs,'low'); % MN
filtr2= filtfilt(B,A,filtr); % MN
filtr2=filtr2(padn+1:end-padn);
tr1=filtr2;
% bandpass filter
nutr=[tr(padn:-1:1);tr;tr(end:-1:end-(padn-1))]; % prefixing and appending signal
N = 2; % MN
[B,A] = butter(N,[f_lo f_hi]*2/fs); % MN
filtr= filtfilt(B,A,nutr); % MN
filtr=filtr(padn+1:end-padn);
tr2=filtr;
plot(ax1,tvec,tr)
plot(ax2,tvec,tr1)
plot(ax3,tvec,tr2)
xlabel(ax3,'Time (s)')
title(ax1,'Original signal, fs=20kHz')
title(ax2,'Sequential high pass and lowpass (0.5 to 100 Hz)')
title(ax3,'Bandpass (0.5 to 100 Hz)')

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